Prometheus in the MLOps Lifecycle
Offered By: CNCF [Cloud Native Computing Foundation] via YouTube
Course Description
Overview
Explore the critical role of Prometheus in the MLOps lifecycle through this informative conference talk. Gain a comprehensive understanding of monitoring ML deployments, including edge cases in production, data drift, concept drift, and model metrics. Discover how to effectively monitor and manage ML models in production environments using Prometheus. Learn techniques for enhancing existing deployments with powerful monitoring capabilities and explore practical demonstrations of integrating Prometheus with Flyte, Seldon Core, and FastAPI ML deployments. Acquire valuable insights into determining when to retrain models, collect additional data, or adjust data collection strategies based on monitoring results.
Syllabus
Prometheus in the MLOps Lifecycle - Rishit Dagli & Shivay Lamba
Taught by
CNCF [Cloud Native Computing Foundation]
Related Courses
How to Detect Silent Failures in ML ModelsData Science Dojo via YouTube Dataset Management for Computer Vision - Important Component to Delivering Computer Vision Solutions
Open Data Science via YouTube Testing ML Models in Production - Detecting Data and Concept Drift
Databricks via YouTube Ekya - Continuous Learning of Video Analytics Models on Edge Compute Servers
USENIX via YouTube Building and Maintaining High-Performance AI
Data Science Dojo via YouTube